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arxiv:2301.00693
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Deep Recurrent Learning Through Long Short Term Memory and TOPSIS

Published on Dec 30, 2022
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Abstract

Cloud-based ERP systems are modeled as a deep recurrent neural network problem with LSTM and TOPSIS algorithms for identifying and ranking adoption features through theoretical validation and user surveys.

AI-generated summary

Enterprise resource planning (ERP) software brings resources, data together to keep software-flow within business processes in a company. However, cloud computing's cheap, easy and quick management promise pushes business-owners for a transition from monolithic to a data-center/cloud based ERP. Since cloud-ERP development involves a cyclic process, namely planning, implementing, testing and upgrading, its adoption is realized as a deep recurrent neural network problem. Eventually, a classification algorithm based on long short term memory (LSTM) and TOPSIS is proposed to identify and rank, respectively, adoption features. Our theoretical model is validated over a reference model by articulating key players, services, architecture, functionalities. Qualitative survey is conducted among users by considering technology, innovation and resistance issues, to formulate hypotheses on key adoption factors.

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